{
 "metadata": {
  "signature": "sha256:4fb38789a2d01816762791c68c05b7636283a15aa14ab54feba445397d094ec5"
 },
 "nbformat": 3,
 "nbformat_minor": 0,
 "worksheets": [
  {
   "cells": [
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Matplotlib: thick axes\n",
      "======================================================================\n",
      "\n",
      "Example of how to thicken the lines around your plot (axes lines) and to\n",
      "get big bold fonts on the tick and axis labels."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "from pylab import *\n",
      "\n",
      "# Thicken the axes lines and labels\n",
      "# \n",
      "#   Comment by J. R. Lu:\n",
      "#       I couldn't figure out a way to do this on the \n",
      "#       individual plot and have it work with all backends\n",
      "#       and in interactive mode. So, used rc instead.\n",
      "# \n",
      "rc('axes', linewidth=2)\n",
      "\n",
      "# Make a dummy plot\n",
      "plot([0, 1], [0, 1])\n",
      "\n",
      "# Change size and font of tick labels\n",
      "# Again, this doesn't work in interactive mode.\n",
      "fontsize = 14\n",
      "ax = gca()\n",
      "\n",
      "for tick in ax.xaxis.get_major_ticks():\n",
      "    tick.label1.set_fontsize(fontsize)\n",
      "    tick.label1.set_fontweight('bold')\n",
      "for tick in ax.yaxis.get_major_ticks():\n",
      "    tick.label1.set_fontsize(fontsize)\n",
      "    tick.label1.set_fontweight('bold')\n",
      "\n",
      "xlabel('X Axis', fontsize=16, fontweight='bold')\n",
      "ylabel('Y Axis', fontsize=16, fontweight='bold')\n",
      "\n",
      "# Save figure\n",
      "savefig('thick_axes.png')"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAAYIAAAEYCAYAAABRB/GsAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nIpJySgQiIin3/wEzCI3oRmX3MQAAAABJRU5ErkJggg==\n",
       "text": [
        "<matplotlib.figure.Figure at 0x7ff4a41cec10>"
       ]
      }
     ],
     "prompt_number": 1
    }
   ],
   "metadata": {}
  }
 ]
}